Semi-supervised Hashing For Semi-paired Cross-view Retrieval
2018 Β· Jun Yu, Xiao-Jun Wu, Josef Kittler
Abstract
Recently, hashing techniques have gained importance in large-scale retrieval tasks because of their retrieval speed. Most of the existing cross-view frameworks assume that data are well paired. However, the fully-paired multiview situation is not universal in real applications. The aim of the method proposed in this paper is to learn the hashing function for semi-paired cross-view retrieval tasks. To utilize the label information of partial data, we propose a semi-supervised hashing learning framework which jointly performs feature extraction and classifier learning. The experimental results on two datasets show that our method outperforms several state-of-the-art methods in terms of retrieval accuracy.
Authors
(none)
Tags
Stats
Related papers
- Learning Discriminative Hashing Codes For Cross-modal Retrieval Based On Multi-view Features (2018)3.58
- Unsupervised Multi-modal Hashing For Cross-modal Retrieval (2019)8.35
- Efficient Discrete Supervised Hashing For Large-scale Cross-modal Retrieval (2019)11.08
- Discriminative Supervised Hashing For Cross-modal Similarity Search (2018)7.81
- RREH: Reconstruction Relations Embedded Hashing For Semi-paired Cross-modal Retrieval (2024)2.26
- Cluster-wise Unsupervised Hashing For Cross-modal Similarity Search (2019)11.39
- Self-supervised Adversarial Hashing Networks For Cross-modal Retrieval (2018)19.56
- Discriminative Cross-view Binary Representation Learning (2018)4.52